确定与无花果插条生根率有关的生化特征的新见解

IF 1.5 4区 农林科学 Q3 PLANT SCIENCES Journal of Berry Research Pub Date : 2024-08-05 DOI:10.3233/jbr-240032
Abbas Mirsoleimani, Zahra Zinati, Shima Abbasi
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引用次数: 0

摘要

背景:无花果树(Ficus carica L.)以其美味可口、营养丰富的果实而闻名,通常采用扦插繁殖。以往的研究侧重于不同处理和环境条件对无花果扦插繁殖的影响,但很少关注叶片、茎皮和果实中的生化特性对生根过程的具体作用和关联。目的:本研究探讨了40种生化特性与无花果插条生根能力之间的复杂关系。为实现这一目标,采用了多种机器学习技术,如随机森林模型、特征重要性分析、线性回归和主成分分析(PCA)。结果:随机森林模型显示出显著的预测能力,分类准确率达到 100%,并有较高的卡帕统计量支持。特征重要性分析表明,a*(果实比色参数)、果实反式阿魏酸和叶片总黄酮是决定插条生根能力的最有影响的性状。根据这些重要性状建立的线性回归模型具有较高的 R 方值(0.9002)和较低的误差指标(MAE 0.7554 和 MSE 0.6980),这证明了这些发现的稳健性。同时,PCA 表明 a*、叶片总黄酮和果实反式阿魏酸是生根率较低样品的主要性状。结论:无花果育种者和种植者可有效利用这些已确定的生物标志物来选择和引进生根能力更强的无花果栽培品种。
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New insights into the identification of biochemical traits linked to rooting percentage in fig ( Ficus carica L.) cuttings
BACKGROUND:The fig (Ficus carica L.) tree known for its tasty and nutritious fruits, is typically propagated by cutting. While previous studies have focused on the effects of different treatments and environmental conditions on fig cutting propagation, little attention has been paid to the specificrole and association of biochemical properties in leaves, stem bark and fruit on the rooting process. OBJECTIVE:This research explores the complex relationship between 40 biochemical traits and the rooting ability of fig cuttings. To achieve this objective, various machine learning techniques were employed, such as a random forest model, feature importance analysis, linear regression, and principal component analysis (PCA). RESULTS:The random forest model showed significant predictive ability with a classification accuracy of 100%, supported by a high kappa statistic. Feature importance analysis identified a* (a colorimetric parameter in fruit), fruit trans-ferulic acid and leaf total flavonoids as the most influential traits in determining the rooting ability of cuttings. The robustness of these findings is supported by the high R-squared value (0.9002) and low error metrics (MAE 0.7554 and MSE 0.6980) of the linear regression model built on these important traits. In parallel, PCA indicated that a*, leaf total flavonoids and fruit trans-ferulic acid were the dominant traits in samples with lower rooting percentage. CONCLUSIONS:These identified biomarkers can be effectively used by fig breeders and growers to select and introduce fig cultivars with improved rooting ability.
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来源期刊
Journal of Berry Research
Journal of Berry Research Biochemistry, Genetics and Molecular Biology-Biochemistry
CiteScore
3.50
自引率
11.80%
发文量
21
期刊介绍: The main objective of the Journal of Berry Research is to improve the knowledge about quality and production of berries to benefit health of the consumers and maintain profitable production using sustainable systems. The objective will be achieved by focusing on four main areas of research and development: From genetics to variety evaluation Nursery production systems and plant quality control Plant physiology, biochemistry and molecular biology, as well as cultural management Health for the consumer: components and factors affecting berries'' nutritional value Specifically, the journal will cover berries (strawberry, raspberry, blackberry, blueberry, cranberry currants, etc.), as well as grapes and small soft fruit in general (e.g., kiwi fruit). It will publish research results covering all areas of plant breeding, including plant genetics, genomics, functional genomics, proteomics and metabolomics, plant physiology, plant pathology and plant development, as well as results dealing with the chemistry and biochemistry of bioactive compounds contained in such fruits and their possible role in human health. Contributions detailing possible pharmacological, medical or therapeutic use or dietary significance will be welcomed in addition to studies regarding biosafety issues of genetically modified plants.
期刊最新文献
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